Sampling based probabilistic roadmap planners (PRM) have been successful in motion planning of robots with higher degrees of freedom, but may fail to capture the connectivity of the configuration space in scenarios with a critical narrow passage. In this paper, we show a novel technique based on Levy Flights to generate key samples in the narrow regions of configuration space, which, when combined with a PRM, improves the completeness of the planner. The technique substantially improves sample quality at the expense of a minimal additional computation, when compared with pure random walk based methods, however, still outperforms state of the art random bridge building method, in terms of number of collision calls, computational overhead and sample quality. The method is robust to the changes in the parameters related to the structure of the narrow passage, thus giving an additional generality. A number of 2D & 3D motion planning simulations are presented which shows the effectiveness of the method.
翻译:以抽样为基础的概率路线图规划者(PRM)成功地对自由度较高的机器人进行了运动性规划,但可能无法在临界狭窄通道的情景下捕捉到配置空间的连通性。在本文中,我们展示了基于Levy Flights的新型技术,以在狭窄配置空间区域生成关键样本,这与PRM相结合,提高了规划者的完整性。与纯随机步行方法相比,该技术大大改进了样本质量,牺牲了最低限度的额外计算,然而,在碰撞呼叫次数、计算间接费用和样本质量方面,该方法仍然优于艺术随机桥建方法的状态。该方法对与狭窄通道结构有关的参数的变化十分有力,从而提供了额外的一般性。提供了2D & 3D运动规划模拟,显示了该方法的有效性。